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PhD Opportunity – Advanced Microwave Sensor Design for Detection Technologies The School of Electrical and Mechanical Engineering at the University of Adelaide is seeking a highly motivated PhD
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of Adelaide, the Australian Wine Research Institute, CSIRO and DSTG. The research will be based at University of Adelaide’s Waite Campus and The Australian Wine Research Institute. Research objectives include
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Centre brings together the innovation power of the State Government of South Australia, The University of Adelaide, and CSIRO Data61 in an unprecedented partnership. This is your chance to join an elite
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within a ‘Group of Eight’ University! The State Government of South Australia, CSIRO and the University of Adelaide’s Australian Institute for Machine Learning (AIML) are actively interested in advancing
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students. AIML works on a mixture of fundamental and commercially orientated research projects in computer vision, natural language processing and machine learning. CSIRO's Data61 is the data and digital
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facilities at the University (e.g., Adelaide Microscopy, MASS) and to the wider network of expertise at The University of Adelaide, CSIRO, Geoscience Australia, and through the ARC Training Centre. To be
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detectors (GWD), including the LIGO detectors. Current projects include the development of wavefront sensors and actuators for improved laser-beam mode control in GWD, including a new facility for full
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. The organisation is currently working on research project(s) related to the release of a new digital product that conducts optimisation of AI algorithms for sustainable home retrofitting solutions. Opportunity
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ideas. To develop algorithms, machine learning models, Python modules, demonstrators and training pipelines for publication and translation into commercial products that can be widely and reliably adopted
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, or spatial relationships of objects—and to indicate when it is unsure about its input. Key expected outcomes include the creation of monitoring algorithms that identify early signs of performance issues, and